长记录心电图及其HRV信号分析表征对充血性心力衰竭分类的评价

Mohamed Omar, Abdalla S. A. Mohamed
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引用次数: 4

摘要

心脏病的鉴别诊断被认为是心脏病学中的一个真正的问题。此外,充血性心脏病(CHF)是最危及生命的疾病之一,其特征是神经系统并发症和肺血流减少。分析长记录心电痕迹和/或提取的HRV信号需要考虑非平稳的存在。在这项工作中,希尔伯特变换应用于得到这些信号的解析表示。瞬时振幅(包络);阶段;并计算了频率。对这些输出应用K-means算法对CHF进行分类。分型结果良好,心电图(92.1%)高于HRV(75.85)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evaluation of the analytic representation of long-record ECG and its HRV signals for congestive heart failure classification
Differential diagnosis of cardiac diseases is considered a real problem in cardiology. Moreover congestive heart disease [CHF] is one of the most life-threatening where it is characterized by neurologic complications, and decreased pulmonary flow. Analysis of long-record ECG trace and/or the extracted HRV signal need to consider the presence of non-stationary. In this work, Hilbert transform is applied to get the analytic representation of these signals. Instantaneous amplitude (envelop); phase; and frequency were calculated. K-means algorithm was applied on these outputs to classify CHF. Classification results were promising with ECG (92.1%) more than HRV (75.85).
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